The Torch-MLIR project aims to provide first class support from the PyTorch ecosystem to the MLIR ecosystem.
 
 
 
 
 
 
Go to file
Vivek Khandelwal 8a06419980 [MLIR][TORCH] Add E2E support for aten.masked_fill.Scalar op
This commit adds lowering of `aten.masked_fill.Scalar` op.
This commit also fixes the formatting of the file constant_alloc.py.

Signed-Off By: Vivek Khandelwal <vivek@nod-labs.com>
2022-05-02 22:27:33 +05:30
.github Update buildRelease.yml 2022-04-25 17:00:31 -07:00
build_tools Provide a way to override MacOS target and arch (#818) 2022-05-02 09:04:12 -07:00
docs Introduce new shape library design. 2022-03-15 12:41:58 -07:00
e2e_testing/torchscript [REFBACKEND] Add support for returning multiple different return types. 2022-04-21 09:02:30 +05:30
examples Add a new `torch_mlir.compile` method. 2022-04-20 10:06:01 -07:00
externals llvm: bump tag to e1318078 (#781) 2022-04-26 12:27:51 -07:00
include [MLIR][TORCH] Add E2E support for aten.avg_pool2d op 2022-05-02 12:31:44 +05:30
lib [MLIR][TORCH] Add E2E support for aten.masked_fill.Scalar op 2022-05-02 22:27:33 +05:30
python [MLIR][TORCH] Add E2E support for aten.masked_fill.Scalar op 2022-05-02 22:27:33 +05:30
test [TORCH][MLIR] Fix ConstantPad2dStaticModule test. 2022-04-29 21:57:01 +05:30
tools Bump LLVM at 8361c5da30588d3d4a48eae648f53be1feb5cfad 2022-03-18 13:16:14 -04:00
utils/bazel [Bazel][Fix] Add missing dependency (#806) 2022-04-27 23:22:27 -07:00
.clang-format Add stub numpy dialect. 2020-04-26 17:20:58 -07:00
.gitignore Add bazel build support (1/N) (#706) 2022-04-06 11:20:39 -07:00
.gitmodules [NFC] Rename external -> externals (#699) 2022-03-26 09:12:27 -07:00
.style.yapf Change preferred style to be PEP8 2022-04-20 14:38:19 -07:00
CMakeLists.txt Fix out-of-tree build of torch-mlir-dialects (#726) 2022-04-04 11:37:28 +02:00
LICENSE Dual license the torch-mlir project. 2021-10-01 10:46:08 -07:00
README.md Remove mention of python-dev. 2022-05-02 09:09:40 -07:00
Torch-MLIR.png Update diagram for TOSA backend. 2022-04-01 22:46:25 +00:00
development.md Move development notes to development.md (#800) 2022-04-26 11:28:04 -07:00
pyproject.toml Minor buildsystem fixes (#778) 2022-04-21 15:53:00 -07:00
requirements.txt Minor buildsystem fixes (#778) 2022-04-21 15:53:00 -07:00
setup.py Add oneshot release snapshot for test/ondemand (#768) 2022-04-21 02:19:12 -07:00

README.md

The Torch-MLIR Project

The Torch-MLIR project aims to provide first class compiler support from the PyTorch ecosystem to the MLIR ecosystem.

This project is participating in the LLVM Incubator process: as such, it is not part of any official LLVM release. While incubation status is not necessarily a reflection of the completeness or stability of the code, it does indicate that the project is not yet endorsed as a component of LLVM.

PyTorch An open source machine learning framework that accelerates the path from research prototyping to production deployment.

MLIR The MLIR project is a novel approach to building reusable and extensible compiler infrastructure. MLIR aims to address software fragmentation, improve compilation for heterogeneous hardware, significantly reduce the cost of building domain specific compilers, and aid in connecting existing compilers together.

Torch-MLIR Multiple Vendors use MLIR as the middle layer, mapping from platform frameworks like PyTorch, JAX, and TensorFlow into MLIR and then progressively lowering down to their target hardware. We have seen half a dozen custom lowerings from PyTorch to MLIR. Having canonical lowerings from the PyTorch ecosystem to the MLIR ecosystem would provide much needed relief to hardware vendors to focus on their unique value rather than implementing yet another PyTorch frontend for MLIR. The goal is to be similar to current hardware vendors adding LLVM target support instead of each one also implementing Clang / a C++ frontend.

All the roads from PyTorch to Torch MLIR Dialect

We have few paths to lower down to the Torch MLIR Dialect.

Torch Lowering Architectures

  • TorchScript This is the most tested path down to Torch MLIR Dialect, and the PyTorch ecosystem is converging on using TorchScript IR as a lingua franca.
  • LazyTensorCore (Based on the PyTorch lazy_tensor_staging branch) This path provides the upcoming LTC path of capture. It is based of an unstable devel branch but is the closest way for you to adapt any existing torch/xla derivatives.

Project Communication

  • #torch-mlir channel on the LLVM Discord - this is the most active communication channel
  • Github issues here
  • torch-mlir section of LLVM Discourse

Install torch-mlir snapshot

This installs a pre-built snapshot of torch-mlir for Python 3.7/3.8/3.9/3.10 on Linux and macOS.

python -m venv mlir_venv
source mlir_venv/bin/activate
# Some older pip installs may not be able to handle the recent PyTorch deps
python -m pip install --upgrade pip
pip install --pre torch-mlir torchvision -f https://github.com/llvm/torch-mlir/releases --extra-index-url https://download.pytorch.org/whl/nightly/cpu
# This will install the corresponding torch and torchvision nightlies

Demos

TorchScript ResNet18

Standalone script to Convert a PyTorch ResNet18 model to MLIR and run it on the CPU Backend:

# Get the latest example if you haven't checked out the code
wget https://raw.githubusercontent.com/llvm/torch-mlir/main/examples/torchscript_resnet18.py

# Run ResNet18 as a standalone script.
python examples/torchscript_resnet18.py

load image from https://upload.wikimedia.org/wikipedia/commons/2/26/YellowLabradorLooking_new.jpg
Downloading: "https://download.pytorch.org/models/resnet18-f37072fd.pth" to /home/mlir/.cache/torch/hub/checkpoints/resnet18-f37072fd.pth
100.0%
PyTorch prediction
[('Labrador retriever', 70.66319274902344), ('golden retriever', 4.956596374511719), ('Chesapeake Bay retriever', 4.195662975311279)]
torch-mlir prediction
[('Labrador retriever', 70.66320037841797), ('golden retriever', 4.956601619720459), ('Chesapeake Bay retriever', 4.195651531219482)]

LazyTensorCore

The LazyTensorCore integration is still in progress, and is being built on the torch_mlir_ltc_backend branch.

Eager Mode

Eager mode with TorchMLIR is a very experimental eager mode backend for PyTorch through the torch-mlir framework. Effectively, this mode works by compiling operator by operator as the NN is eagerly executed by PyTorch. This mode includes a fallback to conventional PyTorch if anything in the torch-mlir compilation process fails (e.g., unsupported operator). A simple example can be found at eager_mode.py. A ResNet18 example can be found at eager_mode_resnet18.py.

Repository Layout

The project follows the conventions of typical MLIR-based projects:

  • include/torch-mlir, lib structure for C++ MLIR compiler dialects/passes.
  • test for holding test code.
  • tools for torch-mlir-opt and such.
  • python top level directory for Python code

Developers

If you would like to develop and build torch-mlir from source please look at Development Notes